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引用本文:王朗宁, 侯炎磐, 李彦峰. 用于SVM的RCS统计特征集约减方法[J]. 雷达科学与技术, 2020, 18(5): 524-530.[点击复制]
WANG Langning, HOU Yanpan, LI Yanfeng. A Method for Reducing Radar Cross Section Data in Support Vector Machine Classification[J]. Radar Science and Technology, 2020, 18(5): 524-530.[点击复制]
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用于SVM的RCS统计特征集约减方法
王朗宁, 侯炎磐, 李彦峰
太原卫星发射中心, 山西太原 030027
摘要:
传统的支持向量机分类算法对训练样本数目敏感且不具备增量学习的能力,而空间目标识别的工程应用需要积累样本进行大样本的增量学习。根据样本在特征空间分布,提取几何意义上边缘的样本点,成功约减了应用于支持向量机学习的基于雷达散射截面统计特征的训练样本集。利用中心距离比和特征空间多维高斯分布特性,分别提取两类边界样本集和单类边缘样本集;再采用直推式实验设计方法再采样,根据样本潜在结构分布信息选择最能代表样本集结构分布的高价值样本。实验结果表明:样本初选算法能够在有效约减样本集规模的同时保持支持向量机训练分类的精度。
关键词:  目标识别  RCS统计特征  支持向量机  高斯分布  中心距  直推式实验设计
DOI:DOI:10.3969/j.issn.1672-2337.2020.05.010
分类号:TN957
基金项目:
A Method for Reducing Radar Cross Section Data in Support Vector Machine Classification
WANG Langning, HOU Yanpan, LI Yanfeng
Taiyuan Satellite Launch Center, Taiyuan 030027, China
Abstract:
Traditional support vector machine (SVM) has difficulty in incremental learning and its algorithm complexity is sensitive to the number of samples, while the space separation target recognition requests the algorithm with large data set and incremental learning ability. A new geometric fast sampling algorithm for support vector machine is proposed and used for the target recognition based on radar cross section (RCS) data. Since the training samples most likely to become the support vectors are located in the geometric edge region, the center distance ratio and the multidimensional Gaussian distribution probability density are used to extract samples from the single label edge section and the classification intersection margin. Transductive experimental design further reduces the number of the samples by selecting the most information data points to represent the distribution information. The narrowband radar experiment data are extracted by the proposed sampling method and classified by the support vector machine. Experimental results demonstrate that this algorithm could select most valuable samples in the original training set and has little influence in classification precision.
Key words:  target recognition  radar cross section (RCS) feature  support vector machine(SVM)  Gaussian distribution  center distance  transductive experimental design

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